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Robust finite mixture regression for heterogeneous targets
Authors:Jian Liang  Kun Chen  Ming Lin  Changshui Zhang  Fei Wang
Affiliation:1.Department of Automation, State Key Lab of Intelligent Technologies and Systems, Tsinghua National Laboratory for Information Science and Technology (TNList),Tsinghua University,Beijing,People’s Republic of China;2.Department of Statistics,University of Connecticut,Storrs,USA;3.Department of Computational Medicine and Bioinformatics,University of Michigan,Ann Arbor,USA;4.Department of Healthcare Policy and Research,Cornell University,New York City,USA
Abstract:Finite Mixture Regression (FMR) refers to the mixture modeling scheme which learns multiple regression models from the training data set. Each of them is in charge of a subset. FMR is an effective scheme for handling sample heterogeneity, where a single regression model is not enough for capturing the complexities of the conditional distribution of the observed samples given the features. In this paper, we propose an FMR model that (1) finds sample clusters and jointly models multiple incomplete mixed-type targets simultaneously, (2) achieves shared feature selection among tasks and cluster components, and (3) detects anomaly tasks or clustered structure among tasks, and accommodates outlier samples. We provide non-asymptotic oracle performance bounds for our model under a high-dimensional learning framework. The proposed model is evaluated on both synthetic and real-world data sets. The results show that our model can achieve state-of-the-art performance.
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